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| DC 欄位 | 值 | 語言 |
|---|---|---|
| dc.contributor.advisor | 宋孔彬 | zh_TW |
| dc.contributor.advisor | Kung-Bin Sung | en |
| dc.contributor.author | 劉亭侑 | zh_TW |
| dc.contributor.author | Ting-You Liu | en |
| dc.date.accessioned | 2026-04-08T16:32:26Z | - |
| dc.date.available | 2026-04-09 | - |
| dc.date.copyright | 2026-04-08 | - |
| dc.date.issued | 2026 | - |
| dc.date.submitted | 2026-03-04 | - |
| dc.identifier.citation | 1. Buckley, E.M., et al., Diffuse correlation spectroscopy for measurement of cerebral blood flow: future prospects. Neurophotonics, 2014. 1(1): p. 011009-011009.
2. Lange, F. and I. Tachtsidis, Clinical brain monitoring with time domain NIRS: a review and future perspectives. Applied Sciences, 2019. 9(8): p. 1612. 3. Wu, J., et al., Two-layer analytical model for estimation of layer thickness and flow using Diffuse Correlation Spectroscopy. PLoS One, 2022. 17(9): p. e0274258. 4. Verdecchia, K., et al., Assessment of a multi-layered diffuse correlation spectroscopy method for monitoring cerebral blood flow in adults. Biomed Opt Express, 2016. 7(9): p. 3659-3674. 5. Wang, Q., et al., A comprehensive overview of diffuse correlation spectroscopy: theoretical framework, recent advances in hardware, analysis, and applications. NeuroImage, 2024. 298: p. 120793. 6. Carp, S.A., et al., Diffuse correlation spectroscopy measurements of blood flow using 1064 nm light. Journal of Biomedical Optics, 2020. 25(9): p. 097003-097003. 7. Liu, W., et al., Fast and sensitive diffuse correlation spectroscopy with highly parallelized single photon detection. APL Photonics, 2021. 6(2). 8. Sutin, J., et al., Time-domain diffuse correlation spectroscopy. Optica, 2016. 3(9): p. 1006-1013. 9. Pagliazzi, M., et al., Time domain diffuse correlation spectroscopy with a high coherence pulsed source: in vivo and phantom results. Biomedical optics express, 2017. 8(11): p. 5311-5325. 10. Pifferi, A., et al., New frontiers in time-domain diffuse optics, a review. Journal of biomedical optics, 2016. 21(9): p. 091310-091310. 11. Qiu, L., et al., Using a simulation approach to optimize time-domain diffuse correlation spectroscopy measurement on human head. Neurophotonics, 2018. 5(2): p. 025007-025007. 12. Mazumder, D., et al., Optimization of time domain diffuse correlation spectroscopy parameters for measuring brain blood flow. Neurophotonics, 2021. 8(3): p. 035005-035005. 13. Qiu, L., et al., Time domain diffuse correlation spectroscopy for detecting human brain function: optimize system on real experimental conditions by simulation method. IEEE Photonics Journal, 2021. 13(4): p. 1-9. 14. Shang, Y., et al., Extraction of diffuse correlation spectroscopy flow index by integration of Nth-order linear model with Monte Carlo simulation. Applied physics letters, 2014. 104(19). 15. Wu, M.M., et al., Complete head cerebral sensitivity mapping for diffuse correlation spectroscopy using subject-specific magnetic resonance imaging models. Biomedical Optics Express, 2022. 13(3): p. 1131-1151. 16. Wang, Q., et al., Quantification of blood flow index in diffuse correlation spectroscopy using a robust deep learning method. J Biomed Opt, 2024. 29(1): p. 015004. 17. Poon, C.S., F. Long, and U. Sunar, Deep learning model for ultrafast quantification of blood flow in diffuse correlation spectroscopy. Biomed Opt Express, 2020. 11(10): p. 5557-5564. 18. Li, Z., et al., Continuous monitoring of tissue oxygen metabolism based on multi-wavelength diffuse correlation spectroscopy using LSTM-based RNN model. Optics & Laser Technology, 2024. 171: p. 110384. 19. Zhao, H. and E.M. Buckley, Influence of oversimplifying the head anatomy on cerebral blood flow measurements with diffuse correlation spectroscopy. Neurophotonics, 2023. 10(1): p. 015010-015010. 20. Zhao, H., E. Sathialingam, and E.M. Buckley, Accuracy of diffuse correlation spectroscopy measurements of cerebral blood flow when using a three-layer analytical model. Biomed Opt Express, 2021. 12(11): p. 7149-7161. 21. Zhou, C., et al., Diffuse optical correlation tomography of cerebral blood flow during cortical spreading depression in rat brain. Optics express, 2006. 14(3): p. 1125-1144. 22. James, E. and P.R.T. Munro, Diffuse Correlation Spectroscopy: A Review of Recent Advances in Parallelisation and Depth Discrimination Techniques. Sensors, 2023. 23(23): p. 9338. 23. Robinson, M.B., et al., Portable, high speed blood flow measurements enabled by long wavelength, interferometric diffuse correlation spectroscopy (LW-iDCS). Scientific Reports, 2023. 13(1): p. 8803. 24. Durduran, T., et al., Optical measurement of cerebral hemodynamics and oxygen metabolism in neonates with congenital heart defects. Journal of biomedical optics, 2010. 15(3): p. 037004-037004-10. 25. Lin, P.-Y., et al., Reduced cerebral blood flow and oxygen metabolism in extremely preterm neonates with low-grade germinal matrix-intraventricular hemorrhage. Scientific reports, 2016. 6(1): p. 25903. 26. Sunwoo, J., et al., Diffuse correlation spectroscopy blood flow monitoring for intraventricular hemorrhage vulnerability in extremely low gestational age newborns. Scientific reports, 2022. 12(1): p. 12798. 27. Dehaes, M., et al., Cerebral oxygen metabolism in neonatal hypoxic ischemic encephalopathy during and after therapeutic hypothermia. Journal of Cerebral Blood Flow & Metabolism, 2014. 34(1): p. 87-94. 28. Sutin, J., et al., Association of cerebral metabolic rate following therapeutic hypothermia with 18-month neurodevelopmental outcomes after neonatal hypoxic ischemic encephalopathy. EBioMedicine, 2023. 94. 29. Nourhashemi, M., et al., Preictal neuronal and vascular activity precedes the onset of childhood absence seizure: direct current potential shifts and their correlation with hemodynamic activity. Neurophotonics, 2023. 10(2): p. 025005-025005. 30. Wu, K.-C., et al., Validation of diffuse correlation spectroscopy measures of critical closing pressure against transcranial Doppler ultrasound in stroke patients. Journal of biomedical optics, 2021. 26(3): p. 036008-036008. 31. Poon, C.-S., et al., Noninvasive optical monitoring of cerebral blood flow and EEG spectral responses after severe traumatic brain injury: a case report. Brain Sciences, 2021. 11(8): p. 1093. 32. Sunar, U., et al., Noninvasive diffuse optical measurement of blood flow and blood oxygenation for monitoring radiation therapy in patients with head and neck tumors:<? xpp qa?> a pilot study. Journal of biomedical optics, 2006. 11(6): p. 064021-064021-13. 33. Kao, T.-C. and K.-B. Sung, Quantifying tissue optical properties of human heads in vivo using continuous-wave near-infrared spectroscopy and subject-specific three-dimensional Monte Carlo models. Journal of Biomedical Optics, 2022. 27(8): p. 083021-083021. 34. Boas, D.A., C. Pitris, and N. Ramanujam, Handbook of biomedical optics. 2016: CRC press. 35. Lemieux, P.-A. and D. Durian, Investigating non-Gaussian scattering processes by using n th-order intensity correlation functions. Journal of the Optical Society of America A, 1999. 16(7): p. 1651-1664. 36. Cheng, X., et al., Development of a Monte Carlo-wave model to simulate time domain diffuse correlation spectroscopy measurements from first principles. Journal of Biomedical Optics, 2022. 27(8): p. 083009-083009. 37. Boas, D., et al., Establishing the diffuse correlation spectroscopy signal relationship with blood flow. Neurophotonics, 2016. 3(3): p. 031412. 38. Harrison, R.L. Introduction to monte carlo simulation. in AIP conference proceedings. 2010. 39. Binzoni, T. and F. Martelli, Assessing the reliability of diffuse correlation spectroscopy models on noise-free analytical Monte Carlo data. Applied Optics, 2015. 54(17): p. 5320-5326. 40. Swinehart, D.F., The beer-lambert law. Journal of chemical education, 1962. 39(7): p. 333. 41. Binzoni, T., et al., The use of the Henyey–Greenstein phase function in Monte Carlo simulations in biomedical optics. Physics in Medicine & Biology, 2006. 51(17): p. N313. 42. Grainger, R., Radiative Transfer Nomenclature, Symbols and Units. 2009. 43. Fang, Q. and D.A. Boas, Monte Carlo simulation of photon migration in 3D turbid media accelerated by graphics processing units. Optics express, 2009. 17(22): p. 20178-20190. 44. McCulloch, W.S. and W. Pitts, A logical calculus of the ideas immanent in nervous activity. The bulletin of mathematical biophysics, 1943. 5(4): p. 115-133. 45. Cintra, R.S. and H.F. de Campos Velho, Data assimilation by artificial neural networks for an atmospheric general circulation model. Advanced applications for artificial neural networks, 2018. 265. 46. 類神經網路(Neural Network). Available from: https://ithelp.ithome.com.tw/m/articles/10306322. 47. Machine Learning - Overfitting. Available from: https://datacadamia.com/data_mining/overfitting. 48. Penny, W.D., et al., Statistical parametric mapping: the analysis of functional brain images. 2011: Elsevier. 49. 高子佳, 以連續波近紅外光譜與三維模型定量人體腦部光學參數, in 生醫電子與資訊學研究所. 2021, 國立臺灣大學: 台北市. p. 151. 50. Bashkatov, A.N., et al., Optical properties of human skin, subcutaneous and mucous tissues in the wavelength range from 400 to 2000 nm. Journal of Physics D: Applied Physics, 2005. 38(15): p. 2543-2555. 51. Bashkatov, A.N., E.A. Genina, and V.V. Tuchin, Optical Properties of Skin, Subcutaneous, and Muscle Tissues: A Review. Journal of Innovative Optical Health Sciences, 2011. 04(01): p. 9-38. 52. Choi, J., et al., Noninvasive determination of the optical properties of adult brain: near-infrared spectroscopy approach. Journal of biomedical optics, 2004. 9(1): p. 221-229. 53. Simpson, C.R., et al., Near-infrared optical properties of ex vivo human skin and subcutaneous tissues measured using the Monte Carlo inversion technique. Physics in Medicine & Biology, 1998. 43(9): p. 2465. 54. Chan, E.K., et al., Effects of compression on soft tissue optical properties. IEEE Journal of Selected Topics in Quantum Electronics, 1996. 2(4): p. 943-950. 55. Tuchin, V.V., et al., Optical properties of human cranial bone in the spectral range from 800 to 2000 nm. 2006. p. 616310-616310-11. 56. Firbank, M., et al., Measurement of the optical properties of the skull in the wavelength range 650-950 nm. Phys Med Biol, 1993. 38(4): p. 503-10. 57. Bevilacqua, F., et al., In vivo local determination of tissue optical properties: applications to human brain. Applied optics, 1999. 38(22): p. 4939-4950. 58. Okada, E. and D.T. Delpy, Near-infrared light propagation in an adult head model. II. Effect of superficial tissue thickness on the sensitivity of the near-infrared spectroscopy signal. Applied Optics, 2003. 42(16): p. 2915-2921. 59. Okui, N. and E. Okada, Wavelength dependence of crosstalk in dual-wavelength measurement of oxy- and deoxy-hemoglobin. J Biomed Opt, 2005. 10(1): p. 11015. 60. Van der Zee, P., M. Essenpreis, and D.T. Delpy. Optical properties of brain tissue. in Photon Migration and Imaging in Random Media and Tissues. 1993. SPIE. 61. Yaroslavsky, A.N., et al., Optical properties of selected native and coagulated human brain tissues in vitro in the visible and near infrared spectral range. Phys Med Biol, 2002. 47(12): p. 2059-73. 62. Farina, A., et al., In-vivo multilaboratory investigation of the optical properties of the human head. Biomed Opt Express, 2015. 6(7): p. 2609-23. 63. Gebhart, S., W. Lin, and A. Mahadevan-Jansen, In vitro determination of normal and neoplastic human brain tissue optical properties using inverse adding-doubling. Physics in Medicine & Biology, 2006. 51(8): p. 2011. 64. Lee, S.Y., et al., Noninvasive optical assessment of resting-state cerebral blood flow in children with sickle cell disease. Neurophotonics, 2019. 6(3): p. 035006-035006. 65. Ohmae, E., et al., Cerebral hemodynamics evaluation by near-infrared time-resolved spectroscopy: correlation with simultaneous positron emission tomography measurements. Neuroimage, 2006. 29(3): p. 697-705. 66. Friberg, L., et al., Cerebral effects of scalp cooling and extracerebral contribution to calculated blood flow values using the intravenous 133Xe technique. Scandinavian Journal of Clinical and Laboratory Investigation, 1986. 46(4): p. 375-379. 67. Wu, M.M., et al., Improved accuracy of cerebral blood flow quantification in the presence of systemic physiology cross-talk using multi-layer Monte Carlo modeling. Neurophotonics, 2021. 8(1): p. 015001. 68. Selb, J., et al., Comparison of a layered slab and an atlas head model for Monte Carlo fitting of time-domain near-infrared spectroscopy data of the adult head. Journal of biomedical optics, 2014. 19(1): p. 016010-016010. 69. Saffarian, S. and E.L. Elson, Statistical analysis of fluorescence correlation spectroscopy: the standard deviation and bias. Biophysical journal, 2003. 84(3): p. 2030-2042. | - |
| dc.identifier.uri | http://tdr.lib.ntu.edu.tw/jspui/handle/123456789/102238 | - |
| dc.description.abstract | 擴散相關光譜術(Diffuse Correlation Spectroscopy, DCS)是一種利用近紅外光量測血管血流變化的非侵入性技術,具有可攜式、可連續監測等優點。然而,傳統連續波DCS(Continuous Wave DCS, CW-DCS)對於深層腦組織量測靈敏度有限,且量測結果容易受到頭皮與顱骨等淺層組織及光學參數不確定性的影響,使得腦血流指數(Blood Flow Index, BFi)的定量仍具挑戰性。本研究旨在建立一套適用於人體頭部的CW-DCS模擬與分析流程,並透過神經網路加速順向模型的計算,系統性評估光學參數誤差對BFi估測之影響,進一步量化BFi之不確定性,藉以提升腦血流定量結果的可靠性。
本研究首先使用磁振造影(Magnetic Resonance Imaging, MRI)建立含頭皮、顱骨、腦脊髓液、灰質與白質之多層頭部模型,使用蒙地卡羅法模擬不同光源與偵測距離(Source-Detector Separation, SDS)下的自相關訊號,評估模擬穩定性與統計誤差。接著以模擬資料訓練類神經網路(Artificial Neural Network, ANN)順向模型,學習由光學參數與BFi預測強度自相關函數,並搭配非線性曲線擬合,擬合頭皮和灰質層組織之BFi,以建立絕對血流指數(BFi)的估測流程。而相對腦血流指數(ΔBFi)預測模型的部分則是透過特徵萃取與機器學習方法,預測BFi的相對變化量。 在誤差分析方面,本研究針對吸收係數及散射係數等光學參數施加 ±20% 的誤差,評估不同層次組織對BFi估測的敏感度。結果顯示,頭皮和灰質之光學參數誤差會放大傳遞至BFi的估計,散射係數的誤差更可能造成40%以上的BFi偏差,顯示準確量測或校正光學參數為腦血流定量的關鍵。 綜合而言,本研究建立了一套以多層頭部模型、蒙地卡羅模擬與ANN順向模型為核心的CW-DCS分析架構,不僅量化了光學參數與頭部結構誤差對腦血流指數的影響,也驗證了以類神經網路加速自相關函數預測與BFi擬合的可行性。此結果可為未來DCS研究上提供設計與參數選擇上的參考。 | zh_TW |
| dc.description.abstract | Diffuse correlation spectroscopy (DCS) is a noninvasive technique that uses near-infrared light to measure changes in microvascular blood flow, offering advantages such as portability and the capability for continuous monitoring. However, conventional continuous-wave DCS (CW-DCS) has limited sensitivity to deep brain tissues, and its measurements are easily affected by superficial layers such as the scalp and skull, as well as uncertainties in tissue optical properties. These factors make quantitative estimation of the blood flow index (BFi) challenging. This study aims to establish a CW-DCS simulation and analysis framework for the human head and to employ neural networks to accelerate the forward-model computation, thereby enabling a systematic evaluation of the influence of optical-parameter errors on BFi estimation and subsequent quantification of BFi uncertainty, with the ultimate goal of improving the reliability of cerebral blood flow quantification.
Magnetic resonance imaging (MRI) was first used to construct a multilayer head model comprising scalp, skull, cerebrospinal fluid, gray matter, and white matter. Monte Carlo simulations were then performed to generate intensity autocorrelation signals at various source–detector separations (SDS), and the stability of the simulations as well as the associated statistical errors were evaluated. On this basis, an artificial neural network (ANN)–based forward model was trained using the simulated data to learn the mapping from optical properties and BFi to the intensity autocorrelation function. The ANN forward model was further integrated with nonlinear curve fitting to retrieve the BFi of the scalp and gray-matter layers, thereby establishing a procedure for absolute BFi estimation. In addition, a relative cerebral blood flow index (ΔBFi) prediction model was developed using feature-extraction and machine-learning methods to estimate relative changes in BFi. For the error analysis, ±20% error were applied to optical parameters including the absorption coefficient, and scattering coefficient, in order to assess the sensitivity of BFi estimation to different tissue layers. The results show that errors in the optical properties of the scalp and gray-matter layers are amplified when propagated to the estimated BFi, and that errors in the scattering coefficient can lead to more than 40% bias in BFi. These findings indicate that accurate measurement or calibration of optical parameters is critical for quantitative assessment of cerebral blood flow. In summary, this research established a CW-DCS analysis framework centered on a multi-layer head model, Monte Carlo simulations, and an ANN forward model. This framework not only quantifies the impact of errors in optical parameters and head-structure modeling on the cerebral blood flow index, but also verifies the feasibility of using neural networks to accelerate autocorrelation prediction and BFi fitting. The results can provide guidance for experimental design and parameter selection in future DCS studies. | en |
| dc.description.provenance | Submitted by admin ntu (admin@lib.ntu.edu.tw) on 2026-04-08T16:32:26Z No. of bitstreams: 0 | en |
| dc.description.provenance | Made available in DSpace on 2026-04-08T16:32:26Z (GMT). No. of bitstreams: 0 | en |
| dc.description.tableofcontents | 口試委員會審定書 I
誌謝 II 中文摘要 III ABSTRACT IV 目次 VI 圖次 X 表次 XII 第一章 緒論 1 1.1 前言 1 1.2 研究動機 3 1.3 文獻回顧 3 1.3.1 DCS總覽 3 1.3.1.1 CW-DCS 4 1.3.1.2 TD-DCS 5 1.3.2 CW-DCS模型設計 6 1.3.2.1 解析解v.s.數值模型 6 1.3.2.2 模型結構影響之探討 7 1.3.2.3 淺層頭皮血流對腦血流之影響 7 1.3.3 雜訊對於系統之影響 7 1.3.4 提升SNR的作法 8 1.3.4.1 Long-Wavelength Approaches 8 1.3.4.2 干涉法 8 1.3.5 應用 9 1.3.5.1 健康成人的腦血流評估 9 1.3.5.2 早產兒與新生兒的腦血流監測 9 1.3.5.3 腦損傷及神經重症患者的臨床應用 9 1.4 研究目標 10 第二章 技術理論介紹 12 2.1 擴散相關光譜原理 12 2.2 自相關函數理論基礎 12 2.2.1 多重散射模型 12 2.3 蒙地卡羅法 13 2.3.1 蒙地卡羅法應用於光學模擬 13 2.3.2 光子路徑長 15 2.3.3 光子行進方向 15 2.3.4 光子能量 16 2.3.5 白蒙地卡羅法 17 2.4 類神經網路 18 2.5 曲線擬合 19 第三章 研究方法 22 3.1 建立順向模型 24 3.1.1 頭部模型 24 3.1.2 光學參數 24 3.1.3 模擬產生訓練資料 30 3.1.4 建立類神經網路 31 3.2 曲線擬合 32 3.2.1 擬合參數 32 3.2.2 擬合方法 32 3.3 相對腦血流指數預測模型 33 3.3.1 資料準備與資料前處理 33 3.3.2 特徵萃取 34 3.3.3 模型訓練與評估 34 3.4 雜訊模型 35 3.5 簡化模型 38 第四章 研究結果與討論 40 4.1 高光子數模擬驗證 40 4.2 誤差分析 41 4.2.1 模擬結果穩定性之評估 41 4.2.2 順向模型誤差評估 45 4.2.3 組織參數誤差對於腦血流指數誤差的影響 46 4.3 文獻方法比較 47 4.3.1 有無考慮光學參數誤差之比較結果 52 4.4 結果比較 52 4.4.1 不同模型之結果比較 52 4.4.2 個體差異影響之分析 55 4.5 討論 59 4.5.1 光學參數之獨立性與可能的連動關係 59 4.5.2 與現有研究的比較:目前其他團隊的進展與誤差表現 59 4.5.3 絕對與相對腦血流的生理意義差異與臨床需求 59 4.5.4 如何改進散射係數的量化與降低不確定性 60 第五章 結論與未來展望 61 5.1 結論 61 5.2 未來展望 61 5.2.1 建置硬體系統並進行實測驗證 61 5.2.2 加入系統雜訊 62 5.2.3 擬合流程之優化 62 5.2.4 加入更多頭部模型的分析 62 5.2.5 泛用化的設計 62 參考文獻 64 | - |
| dc.language.iso | zh_TW | - |
| dc.subject | 擴散相關光譜術 | - |
| dc.subject | 光學參數 | - |
| dc.subject | 蒙地卡羅模擬 | - |
| dc.subject | 類神經網路 | - |
| dc.subject | Diffuse correlation spectroscopy | - |
| dc.subject | Optical parameters | - |
| dc.subject | Monte Carlo simulation | - |
| dc.subject | Artificial neural network | - |
| dc.title | 擴散相關光譜術定量人體腦血流指數之模擬研究 | zh_TW |
| dc.title | Diffuse Correlation Spectroscopy : A Simulation Study on Quantitative Analysis of Cerebral Blood Flow Index in the Human Head | en |
| dc.type | Thesis | - |
| dc.date.schoolyear | 114-2 | - |
| dc.description.degree | 碩士 | - |
| dc.contributor.oralexamcommittee | 吳文超;曾盛豪 | zh_TW |
| dc.contributor.oralexamcommittee | Wen-Chau Wu;Sheng-Hao Tseng | en |
| dc.subject.keyword | 擴散相關光譜術,光學參數蒙地卡羅模擬類神經網路 | zh_TW |
| dc.subject.keyword | Diffuse correlation spectroscopy,Optical parametersMonte Carlo simulationArtificial neural network | en |
| dc.relation.page | 69 | - |
| dc.identifier.doi | 10.6342/NTU202600810 | - |
| dc.rights.note | 未授權 | - |
| dc.date.accepted | 2026-03-05 | - |
| dc.contributor.author-college | 電機資訊學院 | - |
| dc.contributor.author-dept | 生醫電子與資訊學研究所 | - |
| dc.date.embargo-lift | N/A | - |
| 顯示於系所單位: | 生醫電子與資訊學研究所 | |
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